Title: Scales in Taiwan Stock market Prices
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12Random Walk Hypothesis
- The random walk hypothesis is a financial theory
stating that stock market prices evolve according
to a random walk and thus the prices of the stock
market cannot be predicted.
13Non-Random Walk Hypothesis
- There are other economists, professors, and
investors who believe that the market is
predictable to some degree. These people believe
that prices may move in trends and that the study
of past prices can be used to forecast future
price direction. There have been some economic
studies that support this view, and a book has
been written by two professors of economics that
tries to prove the random walk hypothesis wrong.
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- Mandelbrot ???????????,?????,???????????
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- Walking" Along a Coastline
16Fractal dimensions of time sequences
2009
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18Fractal dimensions
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20Dow Jones Industrial Average stock index ( 1900
2007 )
M 11 (green), 12 (blue), and 13 (red).
21Fractal Dimension
D 1.321, 1.486, 1.449
22- In conclusion, we have presented that the DJIA
index is not a random walk for most of the time
(recall that a random walk has a fractal
dimension 1.5). - That is, by calculating the fractal dimension of
a stock index, we have shown clearly that the
assumption of efficient market is false in
general.
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741x 271200811
24Fractal Dimension
25?????????????
2009
26?????????The Mathematics of Options Trading
27Scales in Taiwan stock index data
- F.T. Lee (2004)
- St. Johns St. Marys Institute of Technology
28- In this talk, we will analyze the time evolution
of the Taiwan stock index over the 3-year period
(2001-2003). -
- We observe an interesting power-law scaling
behavior. - We show that the empirical distribution function
(pdf) of index changes have weak leptokurtic
wings. - Our results are different from the results of the
analysis of the SP 500 index by Mantegna and
Stanley. Nature, 376, 46-49(1995)
29leptokurtic distribution ?????
probability density function
Gaussian distribution
price difference (return)
30probability density function
price difference (return)
31- In summary
- We have seen a change in the distribution of
price returns that evolves according to the
relative timescales. -
- There is a gradual transition from a leptokurtic
to a Gaussian distribution. - What statistics of price fluctuations does one
assume over various timescales? - No model exists for the stochastic process
describing the time evolution of price change
that is accepted by all researchers. - The random walk is by far the most easiest
stochastic modeling of stock prices.
32- We consider a study of the statistical properties
of time evolution of Taiwan stock indexes (TAIEX)
over the 3-year period January 2001 to December
2003. - 741x271200811
- We label the times series of the index as Y(t)
for every minute. - We calculate the probability density function
(pdf) P(Z) of index changes (return) -
33Non-overlapping
t t?t
Non-overlapping
1 3 5 7
9
?t2
Overlapping
t t?t
Overlapping
1 2 3 4 5 6 7 8
9
?t2
34 35The pdfs is ?almost symmetric, and
spread as ?t increases as in any
random process ?highly leptokurtic, and
?characterized by a non-Gaussian profile
for small index changes.
36Semi-logarithmic plot shows the leptokurtic
nature.
37Power law scaling behavior
- We study the probability of return to the
origin - as function of
-
-
38Non-overlapping
39Non-overlapping
40Overlapping
41Overlapping
42TAIEX SP500
0.58745 0.712
1.7022 1.4044
43Non-overlapping
44Overlapping
45Lévy distribution
46Lévy distribution
- small a
SP500 - large a
TAIEX
47Standard deviation s(?t) of P(Z)
TAIEX Theoretical value SP500 MIB
0.534 1/2 0.53 0.57
- This value show the presence of a weak long-range
correlation. - The strength of the long-range correlation is
market-dependent and seems to be larger for less
efficient markets (The market information is
passed on to all investors instantaneously, so no
one has an advantage over others when it comes to
decisions on buying/selling. ).
48By extrapolating the and , we
estimate the breakdown of non-Gaussian scaling
occurs at mins. ( SP 500 index occurs at
mins.)
49summary
- We find a non-Gaussian pdf in the probability of
price change from TAIEX. ( mins) - We observe a scaling regime spanning a time
interval of three orders of magnitude. - The empirical pdf of TAIEX have weaker
leptokurtic wings than SP 500 index. - This nature seems to be show that Taiwan stock
market is a less efficient market.